生物
RNA剪接
遗传学
外显子组
计算生物学
剪接
致病性
外显子组测序
选择性拼接
突变
核糖核酸
基因
外显子
微生物学
作者
Karthik A. Jagadeesh,Joseph M. Paggi,James Ye,Peter D. Stenson,D.N. Cooper,Jonathan A. Bernstein,Gill Bejerano
出处
期刊:Nature Genetics
[Nature Portfolio]
日期:2019-02-25
卷期号:51 (4): 755-763
被引量:68
标识
DOI:10.1038/s41588-019-0348-4
摘要
Exome analysis of patients with a likely monogenic disease does not identify a causal variant in over half of cases. Splice-disrupting mutations make up the second largest class of known disease-causing mutations. Each individual (singleton) exome harbors over 500 rare variants of unknown significance (VUS) in the splicing region. The existing relevant pathogenicity prediction tools tackle all non-coding variants as one amorphic class and/or are not calibrated for the high sensitivity required for clinical use. Here we calibrate seven such tools and devise a novel tool called Splicing Clinically Applicable Pathogenicity prediction (S-CAP) that is over twice as powerful as all previous tools, removing 41% of patient VUS at 95% sensitivity. We show that S-CAP does this by using its own features and not via meta-prediction over previous tools, and that splicing pathogenicity prediction is distinct from predicting molecular splicing changes. S-CAP is an important step on the path to deriving non-coding causal diagnoses. S-CAP is an RNA-splicing pathogenicity–prediction tool that can eliminate 41% of variants of unknown significance at 95% sensitivity.
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